I am writing some self contained integration tests around Apache Spark Streaming. I want to test that my code can ingest all kinds of edge cases in my simulated test data. When I was doing this with regular RDDs (not streaming). I could use my inline data and call "parallelize" on it to turn it into a spark RDD. However, I can find no such method for creating destreams. Ideally I would like to call some "push" function once in a while and have the tupple magically appear in my dstream. ATM I'm doing this by using Apache Kafka: I create a temp queue, and I write to it. But this seems like overkill. I'd much rather create the test-dstream directly from my test data without having to use Kafka as a mediator.


For testing purpose, you can create an input stream from a queue of RDDs. Pushing more RDDs in the queue will simulate having processed more events in the batch interval.

val sc = SparkContextHolder.sc
val ssc = new StreamingContext(sc, Seconds(1))
val inputData: mutable.Queue[RDD[Int]] = mutable.Queue()
val inputStream: InputDStream[Int] = ssc.queueStream(inputData)

inputData += sc.makeRDD(List(1, 2)) // Emulate the RDD created during the first batch interval
inputData += sc.makeRDD(List(3, 4)) // 2nd batch interval
// etc

val result = inputStream.map(x => x*x)
result.foreachRDD(rdd => assertSomething(rdd))
ssc.start() // Don't forget to start the streaming context

In addition to Raphael solution I think you like to also either can process one batch a time or everything available approach. You need to set oneAtATime flag accordingly on queustream's optional method argument as shown below:

val slideDuration = Milliseconds(100)
val conf = new SparkConf().setAppName("NetworkWordCount").setMaster("local[8]")
val sparkSession: SparkSession = SparkSession.builder.config(conf).getOrCreate()
val sparkContext: SparkContext = sparkSession.sparkContext
val queueOfRDDs = mutable.Queue[RDD[String]]()

val streamingContext: StreamingContext = new StreamingContext(sparkContext, slideDuration)
val rddOneQueuesAtATimeDS: DStream[String] = streamingContext.queueStream(queueOfRDDs, oneAtATime = true)
val rddFloodOfQueuesDS: DStream[String] = streamingContext.queueStream(queueOfRDDs, oneAtATime = false)



for (i <- (1 to 10)) {
  queueOfRDDs += sparkContext.makeRDD(simplePurchase(i))
  queueOfRDDs += sparkContext.makeRDD(simplePurchase((i + 3) * (i + 3)))


I found this base example: https://github.com/apache/spark/blob/master/examples/src/main/scala/org/apache/spark/examples/streaming/CustomReceiver.scala

The key here is calling the "store" command. Replace the contents of store with whatever you want.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.